Department of Biochemistry and Biophysics, University of California San Francisco, 600 16th Street, San Francisco, CA 94158, USA.
Howard Hughes Medical Institute, University of California San Francisco, 600 16th Street, San Francisco, CA 94158, USA.
Microscopy (Oxf). 2022 Feb 18;71(Supplement_1):i23-i29. doi: 10.1093/jmicro/dfab044.
A powerful aspect of single-particle cryogenic electron microscopy is its ability to determine high-resolution structures from samples containing heterogeneous mixtures of the same macromolecule in different conformational or compositional states. Beyond determining structures at higher resolutions, one outstanding question is if macromolecules with only subtle conformation differences, such as the same protein bound with different ligands in the same binding pocket, can be separated reliably, and if information concerning binding kinetics can be derived from the particle distributions of different conformations obtained in classification. In this study, we address these questions by assessing the classification of synthetic heterogeneous datasets of Transient Receptor Potential Vanilloid 1 generated by combining different homogeneous experimental datasets. Our results indicate that classification can isolate highly homogeneous subsets of particle for calculating high-resolution structures containing individual ligands, but with limitations.
单颗粒低温电子显微镜的一个强大之处在于,它能够从包含同一种大分子处于不同构象或组成状态的混合物的样品中确定高分辨率结构。除了以更高的分辨率确定结构外,一个突出的问题是,只有细微构象差异的大分子,例如在同一结合口袋中与不同配体结合的相同蛋白质,是否可以可靠地区分,如果可以,是否可以从不同构象的粒子分布中得出有关结合动力学的信息。在这项研究中,我们通过评估结合不同的同质实验数据集生成的瞬时受体电位香草素 1 的合成异质数据集的分类来解决这些问题。我们的结果表明,分类可以分离出高度同质的粒子子集,用于计算包含单个配体的高分辨率结构,但存在一定的局限性。